Ɩmer Faruk GƶrĆ§Ć¼n | Optimization | Best Researcher Award

Assoc Prof Dr. Ɩmer Faruk GƶrĆ§Ć¼n , Optimization, Best Researcher Award

Doctorate at Kadir Has University, Turkey

Summary:

Assoc. Prof. Dr. Ɩmer Faruk GƶrĆ§Ć¼n is a distinguished academic and expert in the field of logistics and supply chain management. Currently serving as a Faculty Member at the Faculty of Business Administration at Kadir Has University, Dr. GƶrĆ§Ć¼n is renowned for his contributions to transportation optimization and decision-making techniques. His extensive professional experience includes significant roles in the transportation council of the Ministry of Transportation of Turkey, as well as leadership positions in Research & Development committees and railway regulation committees.

In addition to his academic endeavors, Dr. GƶrĆ§Ć¼n has made substantial contributions to the industry, serving as a member of the board of the Rail Systems Association and providing advisory services to the Crane Operator Association and Heavy Transport Association. He is the author of several scholarly books on topics such as Industry 4.0, Integrated Logistics Management, Supply Chain Management, Warehouse and Inventory Management, and Railway Transportation.

Professional Profile:

ScopusĀ Profile

Orcid Profile

Google Scholar Profile

šŸ‘©ā€šŸŽ“Education & Qualification:

Post-doctorate in Deep Learning

  • Institution: Polytechnique MontrĆ©al
  • Duration: September 2023 – September 2024

Ph.D. in Administration, Operations, and Decision Systems (ODS)

  • Institution: UniversitĆ© Laval
  • Duration: January 2019 – June 2023
  • Scholarships: Ulaval/FSA Scholarship of Excellence, NSERC Scholarship in partnership with Genius Solutions

Bachelor of Computer Science and Mathematics (1st year), Computer Science

  • Institution: UniversitĆ© d’Ɖvry
  • Duration: 2010 – 2011

Professional Experience:Ā Ā 

Assoc. Prof. Dr. Ɩmer Faruk GƶrĆ§Ć¼n has a distinguished professional background in academia and transportation management. Currently serving as a Faculty Member at the Faculty of Business Administration at Kadir Has University, he also holds a significant role as a member of the transportation council of the Ministry of Transportation of Turkey. Throughout his career, Dr. GƶrĆ§Ć¼n has been actively involved in various capacities, including president and member roles in Research & Development committees and railway regulation committees. He has also contributed his expertise as a member of the board of the Rail Systems Association and as an advisor for the Crane Operator Association and Heavy Transport Association. Dr. GƶrĆ§Ć¼n’s professional focus lies in optimization and decision-making techniques within logistics and supply chain management, where he has made significant contributions. Additionally, he has authored numerous publications, including scientific books on Industry 4.0, Integrated Logistics Management, Supply Chain Management, Warehouse and Inventory Management, and Railway Transportation, published by international and national publishers. In academia, Dr. GƶrĆ§Ć¼n remains actively engaged as a scientific committee member, editor, and technical committee member, further enhancing his contributions to his field.

Research Interest:

Assoc. Prof. Dr. Ɩmer Faruk GƶrĆ§Ć¼n’s research interests primarily revolve around optimization and decision-making techniques within the fields of logistics and supply chain management. He focuses on developing innovative solutions to enhance efficiency and effectiveness in transportation systems, particularly in railway transportation. Dr. GƶrĆ§Ć¼n’s research also encompasses topics related to Industry 4.0, integrated logistics management, warehouse and inventory management, and supply chain management. His work aims to address contemporary challenges in these areas, contributing to the advancement of knowledge and the implementation of practical solutions in the industry.

Publication Top Noted:

Title: Warehouse site selection for the automotive industry using a fermatean fuzzy-based decision-making approach

  • Authors: A Saha, D Pamucar, OF Gorcun, AR Mishra
    Journal: Expert Systems with Applications
    Volume: 211
    Pages: 118497
    Year: 2023
    Citations: 49

Title: Yasal dĆ¼zenlemeler ve lojistik yƶnetimi perspektifinden karayolu taşımacılığı

  • Author: ƖF GƶrĆ§Ć¼n
    Publisher: Beta Basım Yayım Dağıtım
    Year: 2010

Title: Formal safety assessment for ship traffic in the Istanbul Straits

  • Authors: ƖF GƶrĆ§Ć¼n, SZ Burak
    Journal: Procedia-Social and Behavioral Sciences
    Volume: 207
    Pages: 252-261
    Year: 2015
    Citations: 41

Title: Evaluation of the European container ports using a new hybrid fuzzy LBWA-CoCoSo’B techniques

  • Authors: D Pamucar, ƖF GƶrĆ§Ć¼n
    Journal: Expert Systems with Applications
    Volume: 203
    Pages: 117463
    Year: 2022
    Citations: 34

Title: The blockchain technology selection in the logistics industry using a novel MCDM framework based on Fermatean fuzzy sets and Dombi aggregation

  • Authors: ƖF GƶrĆ§Ć¼n, D Pamucar, S Biswas
    Journal: Information Sciences
    Volume: 635
    Pages: 345-374
    Year: 2023
    Citations: 30

Anas Neumann | Optimization | Best Researcher Award

Dr. Anas Neumann, Optimization, Best Researcher Award

Doctorate at Polytechnique MontrƩal / UniversitƩ Laval, Canada

Summary:

Dr. Anas Neumann is a highly skilled researcher and educator with expertise in artificial intelligence, optimization, and deep learning. He holds a Ph.D. in Administration with a specialization in Operations and Decision Systems from UniversitƩ Laval. Throughout his academic journey, Dr. Neumann has demonstrated a strong commitment to advancing knowledge and solving real-world problems through innovative research and practical applications.

With over seven years of experience as an Assistant Lecturer at FSA ULaval, Dr. Neumann has played a significant role in teaching algorithmic and data-related courses, preparing students for the challenges of modern industry. Additionally, his tenure as an AI, optimization, and deep learning researcher at CIRRELT has enabled him to contribute to cutting-edge research projects, leveraging machine learning techniques to address complex problems in various domains.

Professional Profile:

ScopusĀ Profile

Google Scholar Profile

šŸ‘©ā€šŸŽ“Education & Qualification:

Post-doctorate in Deep Learning

  • Institution: Polytechnique MontrĆ©al
  • Duration: September 2023 – September 2024

Ph.D. in Administration, Operations, and Decision Systems (ODS)

  • Institution: UniversitĆ© Laval
  • Duration: January 2019 – June 2023
  • Scholarships: Ulaval/FSA Scholarship of Excellence, NSERC Scholarship in partnership with Genius Solutions

Bachelor of Computer Science and Mathematics (1st year), Computer Science

  • Institution: UniversitĆ© d’Ɖvry
  • Duration: 2010 – 2011

Professional Experience:Ā Ā 

Dr. Anas Neumann has a diverse professional experience spanning academia, research, and software development:

Assistant Lecturer at FSA ULaval (September 2019 – Present):

  • Responsibilities include teaching algorithmic and data-related topics in various courses such as Integrated Management Systems, Production Planning and Control, Operations and Logistics in the era of Industry 4.0, and Mathematical Programming and Optimization.
  • Actively involved in course development, delivering lectures, conducting workshops, and participating in faculty meetings.

AI, Optimization, and Deep Learning Researcher at CIRRELT (March 2017 – Present):

  • Engaged in research activities focusing on artificial intelligence, optimization techniques, and deep learning.
  • Conducts research independently and collaboratively, contributing to projects aimed at addressing real-world challenges.
  • Manages and contributes to various research projects, with a particular emphasis on machine learning applications.

Freelance Web Developer at uprodit.com (January 2018 – January 2019):

  • Worked as a freelance web and mobile developer, participating in the creation of several projects.
  • Involved in the development of websites and mobile applications, contributing to project planning, design, implementation, and deployment.

Lecturer at Institut SupĆ©rieur des Arts MultimĆ©dia de la Manouba (ISAMM) (January 2018 – July 2018):

  • Taught “Video game development with C# and Unity3D” class, providing instruction and guidance to students on game development techniques.
  • Contributed to curriculum development and course delivery, fostering a conducive learning environment for students.

Student Internship / Full-stack Web and Mobile Developer at FSA ULaval (March 2017 – August 2017):

  • Participated in a student internship focusing on full-stack web and mobile development.
  • Collaborated with a team to develop sustainable web applications, gaining hands-on experience in software development methodologies.

Dr. Anas Neumann’s professional journey reflects a strong commitment to both academia and practical application, with a focus on teaching, research, and software development in the fields of artificial intelligence, optimization, and deep learning.

Research Interest:

Algorithmic and Data Sciences: He explores novel algorithms and methodologies for optimization, mathematical programming, and data analysis to improve decision-making processes and operational efficiency.

Deep Learning and Neural Networks: Dr. Neumann investigates deep learning architectures, including convolutional neural networks (CNNs), recurrent neural networks (RNNs), and transformer models, for tasks such as natural language processing, image recognition, and sequence prediction.

Meta-Learning and Transfer Learning: He explores meta-learning and transfer learning techniques to adapt pre-trained deep learning models for specific industrial applications, enabling automatic customization and configuration based on customer needs and preferences.

Operations and Logistics in Industry 4.0: Dr. Neumann examines the integration of advanced technologies, such as AI, IoT, and big data analytics, into production planning, supply chain management, and logistics operations to enhance efficiency and responsiveness in the era of Industry 4.0.

Applied AI and Industry Collaboration: He collaborates with industry partners to apply AI and optimization techniques to real-world problems, contributing to the development of innovative solutions and improving business processes.

Publication Top Noted:

Title: A model for advanced planning systems dedicated to the Engineer-To-Order context

  • Journal: International Journal of Production Economics
  • Volume: 252
  • Pages: 108557
  • Year: 2022
  • Citations: 7

Title: A Didactic Review On Genetic Algorithms For Industrial Planning And Scheduling Problems

  • Journal: IFAC-PapersOnLine
  • Volume: 55
  • Issue: 10
  • Pages: 2593-2598
  • Year: 2022
  • Citations: 6

Title: Genetic algorithms for planning and scheduling engineer-to-order production: a systematic review

  • Journal: International Journal of Production Research
  • Volume: 62
  • Issue: 8
  • Pages: 2888-2917
  • Year: 2024
  • Citations: 4

Title: A Two-Level Optimization Approach For Engineer-To-Order Project Scheduling

  • Journal: IFAC-PapersOnLine
  • Volume: 55
  • Issue: 10
  • Pages: 2587-2592
  • Year: 2022
  • Citations: 3

Title: Integrated planning and scheduling of engineer-to-order projects using a Lamarckian Layered Genetic Algorithm

  • Journal: International Journal of Production Economics
  • Volume: 267
  • Pages: 109077
  • Year: 2024
  • Citations: 2